VisTW: Benchmarking Vision-Language Models for Traditional Chinese in Taiwan
By: Zhi Rui Tam , Ya-Ting Pai , Yen-Wei Lee and more
Potential Business Impact:
Tests computers understanding Chinese pictures and words.
In this paper, we propose a comprehensive evaluation benchmark for Visual Language Models (VLM) in Traditional Chinese. Our evaluation suite, the first of its kind, contains two complementary components: (1) VisTW-MCQ, a collection of manually curated exam multi-choice questions from 21 academic subjects designed to test the broad knowledge and reasoning capabilities of VLMs; and (2) VisTW-Dialogue, an open dialogue benchmark comprising 131 image-question pairs manually created to evaluate VLMs' ability in free-form dialogue generation within Taiwanese cultural contexts. These benchmarks address a critical gap in the evaluation landscape, where existing benchmarks predominantly focus on English or Simplified Chinese, neglecting the unique linguistic and cultural aspects of Traditional Chinese used in regions like Taiwan and Hong Kong. Our analysis reveals significant performance differences across various VLMs and highlights specific challenges in processing Traditional Chinese visual content.
Similar Papers
Multi-TW: Benchmarking Multimodal Models on Traditional Chinese Question Answering in Taiwan
Artificial Intelligence
Helps computers understand Chinese pictures, sounds, and words.
TCC-Bench: Benchmarking the Traditional Chinese Culture Understanding Capabilities of MLLMs
Multimedia
Helps AI understand Chinese culture in pictures.
IndicVisionBench: Benchmarking Cultural and Multilingual Understanding in VLMs
CV and Pattern Recognition
Tests AI on Indian languages and culture.